open access publication

Article, 2024

Active learning approach to simulations of strongly correlated matter with the ghost Gutzwiller approximation

Physical Review Research, ISSN 2643-1564, Volume 6, 1, Page 013242, 10.1103/physrevresearch.6.013242

Contributors

Frank, Marius S 0000-0001-8330-4226 [1] Artiukhin, Denis G 0000-0002-0130-954X [2] Lee, Tsung-Han 0000-0002-0571-9909 [3] Yao, Yong-Xin 0000-0002-7830-5942 [4] Barros, Kipton M 0000-0002-1333-5972 [5] Christiansen, Ove 0000-0001-9215-571X [1] Lanatà, Nicola 0000-0003-0003-4908 [6] [7]

Affiliations

  1. [1] Aarhus University
  2. [NORA names: AU Aarhus University; University; Denmark; Europe, EU; Nordic; OECD];
  3. [2] Freie Universität Berlin
  4. [NORA names: Germany; Europe, EU; OECD];
  5. [3] National Chung Cheng University
  6. [NORA names: Taiwan; Asia, East];
  7. [4] Iowa State University
  8. [NORA names: United States; America, North; OECD];
  9. [5] Los Alamos National Laboratory
  10. [NORA names: United States; America, North; OECD];

Abstract

Quantum embedding (QE) methods such as the ghost Gutzwiller approximation (gGA) offer a powerful approach to simulating strongly correlated systems, but come with the computational bottleneck of computing the ground state of an auxiliary embedding Hamiltonian (EH) iteratively. In this work, we introduce an active learning (AL) framework integrated within the gGA to address this challenge. The methodology is applied to the single-band Hubbard model and results in a significant reduction in the number of instances where the EH must be solved. Through a principal component analysis (PCA), we find that the EH parameters form a low-dimensional structure that is largely independent of the geometric specifics of the systems, especially in the strongly correlated regime. Our AL strategy enables us to discover this low-dimensionality structure on the fly, while leveraging it for reducing the computational cost of gGA, laying the groundwork for more efficient simulations of complex strongly correlated materials.

Keywords

AL strategies, EH parameters, Eh, Gutzwiller approximation, Hubbard model, active learning, active learning approach, analysis, approach, approximation, bottleneck, complex, component analysis, computational bottleneck, computational cost, correlated materials, correlated matter, correlated regime, correlated systems, efficient simulation, embedding, flies, geometrical specifications, ghost, ground, ground state, learning, learning approach, low-dimensional structures, materials, matter, methodology, model, parameters, principal component analysis, quantum, quantum embedding, reduction, regime, simulation, simulation of complex, single-band Hubbard model, specificity, state, strategies, structure, system

Funders

  • Simons Foundation
  • Los Alamos National Laboratory
  • Novo Nordisk Foundation
  • Novo Nordisk (Denmark)
  • Office of Science

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